Journal of Sustainable Agriculture and Environment (Mar 2023)

Deep learning for sustainable agriculture needs ecology and human involvement

  • Masahiro Ryo,
  • Josepha Schiller,
  • Stefan Stiller,
  • Juan Camilo Rivera Palacio,
  • Konlavach Mengsuwan,
  • Anastasiia Safonova,
  • Yuqi Wei

DOI
https://doi.org/10.1002/sae2.12036
Journal volume & issue
Vol. 2, no. 1
pp. 40 – 44

Abstract

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Abstract Deep learning is an emerging data analytic tool that can improve predictability, efficiency and sustainability in agriculture. With a bibliometric analysis of 156 articles, we show how deep learning methods have been applied in the context of sustainable agriculture. As a general publication trend, China and India are leading countries for publication, international collaboration is still minor. Deep learning has been popularly applied in the context of smart agriculture across scales for individual plant monitoring, field monitoring, field operation and robotics, predicting soil, water and climate conditions and landscape‐level monitoring of land use and crop types. We identified that the potential of deep learning had been investigated mainly for predicting soil (abiotic), water, climate and vegetation dynamics, but ecological characteristics are critically understudied. We also highlight key themes that can be better addressed with deep learning for fostering sustainable agriculture: (i) including above‐ and belowground ecological dynamics such as ecosystem functioning and ecotone, (ii) evaluating agricultural impacts on other ecosystems and (iii) incorporating the knowledge and opinions of domain experts and stakeholders into artificial intelligence. We propose that deep learning needs to go beyond automatic data analysis by integrating ecological and human knowledge to foster sustainable agriculture.

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